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Genetic and clinical variables identify predictors for chronic kidney disease in type 2 diabetes
Author(s) -
Guozhi Jiang,
Cheng Hu,
Claudia H. T. Tam,
Eric S. H. Lau,
Ying Wang,
Andrea O. Y. Luk,
Xilin Yang,
Alice P.S. Kong,
Janice S. K. Ho,
Vincent K. Lam,
Heung Man Lee,
Jie Wang,
Rong Zhang,
Stephen KwokWing Tsui,
Maggie Ng,
CheukChun Szeto,
Weiping Jia,
Xiaodan Fan,
Wing Yee So,
Juliana C.N. Chan,
Ronald C.W.
Publication year - 2016
Publication title -
kidney international
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 3.499
H-Index - 276
eISSN - 1523-1755
pISSN - 0085-2538
DOI - 10.1016/j.kint.2015.09.001
Subject(s) - kidney disease , type 2 diabetes , medicine , diabetes mellitus , disease , endocrinology
Type 2 diabetes and chronic kidney disease (CKD) may share common risk factors. Here we used a 3-stage procedure to discover novel predictors of CKD by repeatedly applying a stepwise selection based on the Akaike information criterion to subsamples of a prospective complete-case cohort of 2755 patients. This cohort encompassed 25 clinical variables and 36 genetic variants associated with type 2 diabetes, obesity, or fasting plasma glucose. We compared the performance of the clinical, genetic, and clinico-genomic models and used net reclassification improvement to evaluate the impact of top selected genetic variants to the clinico-genomic model. Associations of selected genetic variants with CKD were validated in 2 independent cohorts followed by meta-analyses. Among the top 6 single-nucleotide polymorphisms selected from clinico-genomic data, three (rs478333 of G6PC2, rs7754840 and rs7756992 of CDKAL1) contributed toward the improvement of prediction performance. The variant rs478333 was associated with rapid decline (over 4% per year) in estimated glomerular filtration rate. In a meta-analysis of 2 replication cohorts, the variants rs478333 and rs7754840 showed significant associations with CKD after adjustment for conventional risk factors. Thus, this novel 3-stage approach to a clinico-genomic data set identified 3 novel genetic predictors of CKD in type 2 diabetes. This method can be applied to similar data sets containing clinical and genetic variables to select predictors for clinical outcomes.

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